Role Adherence
The role adherence metric is a conversational metric that determines whether your LLM chatbot is able to adhere to its given role throughout a conversation.
The RoleAdherenceMetric is particular useful for a role-playing usecase.
Required Arguments
To use the RoleAdherenceMetric, you'll have to provide the following arguments when creating a ConversationalTestCase:
turnschatbot_role
Additionally, each LLMTestCases in turns requires the following arguments:
inputactual_output
Example
Let's take this conversation as an example:
from deepeval.test_case import LLMTestCase, ConversationalTestCase
from deepeval.metrics import RoleAdherenceMetric
convo_test_case = ConversationalTestCase(
chatbot_role="...",
turns=[LLMTestCase(input="...", actual_output="...")]
)
metric = RoleAdherenceMetric(threshold=0.5)
metric.measure(convo_test_case)
print(metric.score)
print(metric.reason)
There are six optional parameters when creating a RoleAdherenceMetric:
- [Optional]
threshold: a float representing the minimum passing threshold, defaulted to 0.5. - [Optional]
model: a string specifying which of OpenAI's GPT models to use, OR any custom LLM model of typeDeepEvalBaseLLM. Defaulted to 'gpt-4o'. - [Optional]
include_reason: a boolean which when set toTrue, will include a reason for its evaluation score. Defaulted toTrue. - [Optional]
strict_mode: a boolean which when set toTrue, enforces a binary metric score: 1 for perfection, 0 otherwise. It also overrides the current threshold and sets it to 1. Defaulted toFalse. - [Optional]
async_mode: a boolean which when set toTrue, enables concurrent execution within themeasure()method. Defaulted toTrue. - [Optional]
verbose_mode: a boolean which when set toTrue, prints the intermediate steps used to calculate said metric to the console, as outlined in the How Is It Calculated section. Defaulted toFalse.
How Is It Calculated?
The RoleAdherenceMetric score is calculated according to the following equation:
The RoleAdherenceMetric first loops through each turn individually before using an LLM to determine which one of them does not adhere to the specified chatbot_role using previous turns as context.